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Imprecise evidence in social learning

Zixuan Liu, Michael Crosscombe, Jonathan Lawry

Year
2024
Citations
3
Access
Open access

Abstract

Abstract Social learning is a collective approach to decentralised decision-making and is comprised of two processes; evidence updating and belief fusion. In this paper we propose a social learning model in which agents’ beliefs are represented by a set of possible states, and where the evidence collected can vary in its level of imprecision. We investigate this model using multi-agent and multi-robot simulations and demonstrate that it is robust to imprecise evidence. Our results also show that certain kinds of imprecise evidence can enhance the efficacy of the learning process in the presence of sensor errors.

Keywords

Computer scienceSocial learningArtificial intelligenceSet (abstract data type)Process (computing)Machine learningKnowledge management

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